Ranking user-annotated images for multiple query terms
British Machine Vision Conference - sep 2009
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We show how web image search can be improved by taking into account
the users who provided different images, and that performance when searching for
multiple terms can be increased by learning a new
combined model and taking account of images which partially match the query.
Search queries are answered by using a
mixture of kernel density estimators to rank the visual content of web
images from the Flickr website whose noisy tag annotations match the
given query terms. Experiments show that requiring agreement between
images from different users allows a better model of the visual class
to be learnt, and that precision can be increased by rejecting images
from `untrustworthy' users. We focus on search queries for multiple
terms, and demonstrate enhanced performance by learning
a single model for the overall query, treating images which only
satisfy a subset of the search terms as negative training examples.
Images and movies
See also
BibTex references
@InProceedings{AV09,
author = "Moray Allan and Jakob Verbeek",
title = "Ranking user-annotated images for multiple query terms",
booktitle = "British Machine Vision Conference",
month = "sep",
year = "2009",
keywords = "LEAR, CLASS, R2I, LJK",
url = "http://lear.inrialpes.fr/pubs/2009/AV09"
}
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